Row by column multiplication
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Consider two matrices A and B defined by
A=rand(10,3);
B=rand(3,10);
I'm interested in multiplying the vectors defined the first, second, and third rows in B by the vectors defined the first, second, and third columns in A, respectively. My intent is to generate ten, 3X3 matrices defined by
Matrix1= B(:,1)*A(1,:)
Matrix2= B(:,2)*A(2,:)
...
Matrix10= B(:,10)*A(10,:)
My initial thought was something like
B(:,1:10)*A(1:10,:)
but this approach populates the matrices B and A prior to multiplication, yielding a single 3X3 matrix. How to I change the "order-of-operations" if you will---call each vector on a term-by-term basis, multiplying in between each call to generate the desired matrix? Of course, I really want to avoid having to use for loops.
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Akzeptierte Antwort
Matt J
am 15 Okt. 2012
Here's a completely vectorized method, which requires James Tursa's MTIMESX function, available at the link below
A=reshape(A',1,3,10);
B=reshape(B,3,1,10);
C=mtimesx(B,A)
3 Kommentare
Amandeep Gautam
am 22 Okt. 2015
I wonder if there is anything wrong with A' * B? Seems like it does the same thing. Can you comment?
Matt J
am 22 Okt. 2015
That will generate an error
>> A=rand(10,3); B=rand(3,10); A'*B
Error using *
Inner matrix dimensions must agree.
Weitere Antworten (4)
Azzi Abdelmalek
am 15 Okt. 2012
Bearbeitet: Azzi Abdelmalek
am 15 Okt. 2012
for k=1:10
matrix{k}=B(:,k)*A(k,:)
end
%or
for k=1:10
matrix(:,:,k)=B(:,k)*A(k,:)
end
0 Kommentare
Matt Fig
am 15 Okt. 2012
Bearbeitet: Matt Fig
am 15 Okt. 2012
I think you can avoid FOR loops, but I see no reason to do so here:
A=randi(10,10,3);
B=randi(10,3,10);
for ii = 10:-1:1,C{ii} = B(:,ii)*A(ii,:);end
Here is a vectorization, but I can almost guarantee you it will be slower than the above FOR loop:
cellfun(@mtimes,mat2cell(B,3,ones(1,10)).',mat2cell(A,ones(1,10),3),'Un',0)
0 Kommentare
Matt J
am 15 Okt. 2012
Here's a 1-liner. It's syntactically brief, but not superior to using loops directly,
C=cellfun(@(a,b) a(:)*b(:).', num2cell(B,1), num2cell(A,2).', 'uni',0)
0 Kommentare
Richard Brown
am 15 Okt. 2012
Bearbeitet: Richard Brown
am 15 Okt. 2012
There is a built in way to do it quickly if you use sparse multiplication. Essentially, you construct the block diagonal matrix blkdiag(B(:, 1), ... , B(:, N)) directly, and multiply it by A to give Y = [B(:, 1)*A(1, :) ; ... ; B(:, N) * A(N, :)]
N = 10000;
A = rand(N, 3);
B = rand(3, N);
I = 1:3*N;
J = repmat(1:N, 3, 1);
Y = mat2cell(sparse(I, J, B) * A, repmat(3, N, 1), 3);
edit: brief explanation added
3 Kommentare
Richard Brown
am 16 Okt. 2012
Well, it depends what precisely speaking we mean by "built in" doesn't it?! My definition is that if it comes with a basic MATLAB install it's builtin.
Also, the mat2cell call isn't necessary -- it's just to convert it to the output format in some of the other answers. And the code doesn't touch the branch of repmat that uses for loops. Poor old for loops, they get such a hard time here :)
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